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Application of bagging ensemble model for predicting compressive strength of hollow concrete masonry prism

Ahmad Sharafati, Seyed Babak Haji Seyed Asadollah, Nadhir Al‐Ansari

2021Ain Shams Engineering Journal68 citationsDOIOpen Access PDF

Abstract

In the current research, a newly developed ensemble intelligent predictive model called Bagging Regression (BGR) is proposed to predict the compressive strength of a hollow concrete masonry prism (fp). A matrix of input combinations is constructed based on several predictive variables, including mortar compressive strength (fm), concrete block compressive strength (fb), and height to thickness ratio (h/t). Three modeling scenarios based on the different data divisions (i.e., 80–20%, 75–25%, and 70–30%) for training-testing phases are evaluated. The proposed model is validated against classical support vector regression (SVR) and decision tree regression (DTR) models using statistical indicators and graphical presentations. Results indicate the superiority of the BGR over the other models. In quantitative terms, BGR attains minimum root mean square error (RMSE = 1.51 MPa) using the data division scenario of 80–20% in the testing phase, while DTR and standalone SVR models offer RMSE = 2.55 and 2.33 MPa, respectively.

Topics & Concepts

Compressive strengthMean squared errorSupport vector machineRegression analysisDecision treeMasonryLinear regressionStatisticsMathematicsPrismComputer scienceEngineeringData miningStructural engineeringMachine learningMaterials scienceComposite materialOpticsPhysicsInfrastructure Maintenance and MonitoringConcrete Corrosion and DurabilityInnovative concrete reinforcement materials
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